Optimal Bayesian estimation of the state of a probabilistically mapped memory-conditional Markov process with application to manual Morse decoding
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Optimal Bayesian estimation of the state of a probabilistically mapped memory-conditional Markov process with application to manual Morse decoding
- Publication date
- 1977-09
- Topics
- Manual Morse Decoding
- Publisher
- Monterey, California: U.S. Naval Postgraduate School
- Collection
- navalpostgraduateschoollibrary; fedlink; americana
- Contributor
- Naval Postgraduate School, Dudley Knox Library
- Language
- en_US
- Item Size
- 325.6M
Dissertation supervisor(s): Jauregui, S
"September 1977."
Bibliography: l. 194-195
Dissertation (Ph.D. in Engineernig)--Naval Postgraduate School, 1977
This dissertation investigates the problem of automatic transcription of the hand-keyed' Morse signal. A unified model for this signal process transmitted over a noisy channel is shown to be a system in which the state of the Morse process evolves as a memory-conditioned probabilistic mapping of a conditional Markov process, with the state of this process playing the role of a parameter vector of the channel model. The decoding problem is then posed as finding an optimal estimate of the state of the Morse process, given a sequence of measurements of the detected signal. The Bayesian solution to this nonlinear estimation problem is obtained explicitly for the parameter-conditional lineargaussian channel, and the resulting optimal decoder is shown to consist of a denumerable but exponentially expanding set of linear Kalman filters operating ona dynamically evolving trellis. Decoder performance is obtained by computer simulation, for the case of random letter message texts. For nonrandom texts, further research is indicated to specify linguistic and formatdependent models consistent with the model structure developed herein
Mode of access: World Wide Web
System requirements: Adobe Acrobat Reader
US Navy (USN) author
upgraded 2/27/09 dk
"September 1977."
Bibliography: l. 194-195
Dissertation (Ph.D. in Engineernig)--Naval Postgraduate School, 1977
This dissertation investigates the problem of automatic transcription of the hand-keyed' Morse signal. A unified model for this signal process transmitted over a noisy channel is shown to be a system in which the state of the Morse process evolves as a memory-conditioned probabilistic mapping of a conditional Markov process, with the state of this process playing the role of a parameter vector of the channel model. The decoding problem is then posed as finding an optimal estimate of the state of the Morse process, given a sequence of measurements of the detected signal. The Bayesian solution to this nonlinear estimation problem is obtained explicitly for the parameter-conditional lineargaussian channel, and the resulting optimal decoder is shown to consist of a denumerable but exponentially expanding set of linear Kalman filters operating ona dynamically evolving trellis. Decoder performance is obtained by computer simulation, for the case of random letter message texts. For nonrandom texts, further research is indicated to specify linguistic and formatdependent models consistent with the model structure developed herein
Mode of access: World Wide Web
System requirements: Adobe Acrobat Reader
US Navy (USN) author
upgraded 2/27/09 dk
Notes
some content may be lost due to the binding of the book.
- Addeddate
- 2012-08-09 18:21:13
- Call number
- ocm640092569
- Camera
- Canon EOS 5D Mark II
- Contributor.advisor
- Jauregui, S.
- Degree.discipline
- Engineering
- Degree.grantor
- Naval Postgraduate School
- Degree.level
- doctoral
- Degree.name
- Ph.D. in Engineering
- Description.service
- U.S. Navy (U.S.N.) author.
- External-identifier
-
urn:handle:10945/26668
urn:oclc:record:1050246308
- Foldoutcount
- 0
- Identifier
- optimalbayesiane00bell
- Identifier-ark
- ark:/13960/t54f30705
- Identifier.oclc
- ocm640092569
- Ocr_converted
- abbyy-to-hocr 1.1.37
- Ocr_module_version
- 0.0.21
- Openlibrary_edition
- OL25411528M
- Openlibrary_work
- OL16790936W
- Page-progression
- lr
- Page_number_confidence
- 10
- Page_number_module_version
- 1.0.3
- Pages
- 406
- Ppi
- 350
- Republisher_date
- 20120810184745
- Republisher_operator
- associate-karina-martinez@archive.org
- Scandate
- 20120810151846
- Scanner
- scribe10.sanfrancisco.archive.org
- Scanningcenter
- sanfrancisco
- Source
- half
- Type
- Thesis
- Full catalog record
- MARCXML
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